Schemas, reinforcement learning and the medial prefrontal cortex

IF 28.7 1区 医学 Q1 NEUROSCIENCES
Oded Bein, Yael Niv
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引用次数: 0

Abstract

Schemas are rich and complex knowledge structures about the typical unfolding of events in a context; for example, a schema of a dinner at a restaurant. In this Perspective, we suggest that reinforcement learning (RL), a computational theory of learning the structure of the world and relevant goal-oriented behaviour, underlies schema learning. We synthesize literature about schemas and RL to offer that three RL principles might govern the learning of schemas: learning via prediction errors, constructing hierarchical knowledge using hierarchical RL, and dimensionality reduction through learning a simplified and abstract representation of the world. We then suggest that the orbitomedial prefrontal cortex is involved in both schemas and RL due to its involvement in dimensionality reduction and in guiding memory reactivation through interactions with posterior brain regions. Last, we hypothesize that the amount of dimensionality reduction might underlie gradients of involvement along the ventral–dorsal and posterior–anterior axes of the orbitomedial prefrontal cortex. More specific and detailed representations might engage the ventral and posterior parts, whereas abstraction might shift representations towards the dorsal and anterior parts of the medial prefrontal cortex. A computational account of how schemas are learned through experience is lacking. In this Perspective, Bein and Niv synthesize schema theory and reinforcement learning research to derive computational principles that might govern schema learning and then propose their mediation via dimensionality reduction in the medial prefrontal cortex.

Abstract Image

Abstract Image

图式,强化学习和内侧前额皮质
图式是关于事件在语境中典型展开的丰富而复杂的知识结构;例如,在餐馆吃晚餐的图式。从这个角度来看,我们认为强化学习(RL),一种学习世界结构和相关目标导向行为的计算理论,是模式学习的基础。我们综合了关于模式和强化学习的文献,提出了三个强化学习原则:通过预测错误进行学习,使用分层强化学习构建分层知识,以及通过学习简化和抽象的世界表征进行降维。因此,我们认为眶内侧前额叶皮层参与图式和强化学习,因为它参与维数降低,并通过与大脑后部区域的相互作用指导记忆再激活。最后,我们假设维数减少的数量可能是沿眶内侧前额皮质腹背轴和后前轴受累梯度的基础。更具体和详细的表征可能涉及腹侧和后部,而抽象可能将表征转移到内侧前额叶皮层的背侧和前部。
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来源期刊
自引率
0.60%
发文量
104
期刊介绍: Nature Reviews Neuroscience is a multidisciplinary journal that covers various fields within neuroscience, aiming to offer a comprehensive understanding of the structure and function of the central nervous system. Advances in molecular, developmental, and cognitive neuroscience, facilitated by powerful experimental techniques and theoretical approaches, have made enduring neurobiological questions more accessible. Nature Reviews Neuroscience serves as a reliable and accessible resource, addressing the breadth and depth of modern neuroscience. It acts as an authoritative and engaging reference for scientists interested in all aspects of neuroscience.
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